4.7 Article

Enhanced Identification of Zero-Length Chemical Cross-Links Using Label-Free Quantitation and High-Resolution Fragment Ion Spectra

期刊

JOURNAL OF PROTEOME RESEARCH
卷 13, 期 2, 页码 898-914

出版社

AMER CHEMICAL SOC
DOI: 10.1021/pr400953w

关键词

chemical cross-linking; mass spectrometry; software

资金

  1. U.S. National Institutes of Health [R01HL038794]
  2. NCI core grant [P30CA010815]
  3. Philadelphia Health Care Trust Fellowship

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Chemical cross-linking coupled to mass spectrometry provides structural information that is useful for probing protein conformations and providing experimental support for molecular models. Zero-length cross-links have greater value for these applications than longer cross-links because they provide more stringent distance constraints. However, this method is less commonly utilized because it cannot take advantage of isotopic labels, MS-labile bonds, or enrichment tags to facilitate identification. In this study, we combined label-free precursor ion quantitation and targeted tandem mass spectrometry with a new software tool, Zero-length Cross-link Miner (ZXMiner), to form a multitiered analysis strategy. A major, critical objective was to simultaneously achieve very high accuracy with essentially no false-positive cross-link identifications while maintaining a good depth of analysis. Our strategy was optimized on several proteins with known crystal structures. Comparison of ZXMiner to several existing cross-link analysis software showed that other algorithms detected less true positive cross-links and were far less accurate. Although prior use of zero-length cross-linking was typically restricted to small proteins, ZXMiner and the associated strategy enable facile analysis of very large protein complexes. This was demonstrated by identification of zero-length cross-links using purified 526 kDa spectrin heterodimers and intact red cell membranes and membrane skeletons.

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